医学
透视
收缩(语法)
心脏病学
前壁
内科学
放射科
作者
Hai Jiang,Xiaofeng Hou,Zhiyong Qian,Yao Wang,Lijun Tang,Yuanhao Qiu,Zeyu Jiang,Xing Chen,Kebei Li,Jiangang Zou
出处
期刊:Heart Rhythm
[Elsevier]
日期:2020-10-01
卷期号:17 (10): 1759-1767
被引量:34
标识
DOI:10.1016/j.hrthm.2020.05.018
摘要
Background
Left bundle branch (LBB) pacing is a novel pacing modality, but there is no standard fluoroscopic methodology. Objectives
This study aimed to analyze the characteristics of His bundle (HB) and LBB pacing lead locations and establish a method to guide LBB pacing using fluoroscopic images. Methods
Seventy patients who underwent HB or LBB pacing were enrolled. The fluoroscopic image was recorded, and ventricular contraction ring in the right anterior oblique 30° projection was determined. The region between the apex and the ventricular contraction ring was divided into 9 partitions. All patients underwent postoperative computed tomography to confirm components of the ventricular contraction ring and to measure the distance from the lead tip to the junction of the noncoronary aortic cusp and right coronary cusp. Results
HB and LBB pacing leads were successfully implanted in 11 and 35 patients, respectively. All HB pacing leads were distributed in the second partition, and 94.3% (33/35) of LBB pacing leads were in the junctional area of second and fifth partitions. The computed tomography image confirmed that the ventricular contraction ring was composed of cardiac valves. The distance from the lead tip to the junction of the noncoronary cusp and right coronary cusp of LBB and HB pacing leads was 3.8 ± 0.6 and 1.9 ± 0.2 cm, respectively. Under the guidance of the 9-partition method, the success rate of LBB pacing in 30 prospective patients increased from 58.3% (35/60) to 83.3% (25/30) (P = .03). The fluoroscopy time and the number of screwing sites also significantly decreased. Conclusion
The distributions of HB and LBB pacing leads exhibited unique imaging characteristics. A new 9-partition method is useful to guide successful LBB pacing.
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